基于攻击信号缩放和对抗扰动消除的鲁棒网络对齐

Yang Zhou, Zeru Zhang, Sixing Wu, Victor S. Sheng, Xiaoying Han, Zijie Zhang, R. Jin
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引用次数: 15

摘要

最近的研究表明,图学习模型极易受到对抗性攻击,网络对齐方法也不例外。如何增强网络对齐对对抗性攻击的鲁棒性仍然是一个有待研究的问题。在本文中,我们提出了一种鲁棒的网络对齐解决方案RNA,用于为现有的网络对齐算法提供先发制人的保护,并在有效对抗性攻击的指导下得到增强。首先,我们分析了流行的基于迭代梯度的对抗性攻击技术如何遭受梯度消失问题,并显示出虚假的攻击有效性。基于动态等距理论,提出了一种具有可行信号缩放上界的攻击信号缩放方法,在保持网络对齐决策边界的同时,缓解了有效对抗性攻击的梯度消失问题。其次,通过Dirac delta近似(DDA)技术和LSTM模型的集成,建立了对抗摄动消除(APE)模型,将脆弱空间中的对抗节点中和为安全区域中的无对抗节点。我们提出的APE方法能够为现有的网络对齐算法提供针对对抗性攻击的主动保护。理论分析表明,APE模型存在达到下界的最优分布。最后但并非最不重要的是,对真实数据集的广泛评估表明,RNA能够针对三种流行的对抗性攻击模型,为训练有素的网络对齐方法提供先发制人的保护。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Network Alignment via Attack Signal Scaling and Adversarial Perturbation Elimination
Recent studies have shown that graph learning models are highly vulnerable to adversarial attacks, and network alignment methods are no exception. How to enhance the robustness of network alignment against adversarial attacks remains an open research problem. In this paper, we propose a robust network alignment solution, RNA, for offering preemptive protection of existing network alignment algorithms, enhanced with the guidance of effective adversarial attacks. First, we analyze how popular iterative gradient-based adversarial attack techniques suffer from gradient vanishing issues and show a fake sense of attack effectiveness. Based on dynamical isometry theory, an attack signal scaling (ASS) method with established upper bound of feasible signal scaling is introduced to alleviate the gradient vanishing issues for effective adversarial attacks while maintaining the decision boundary of network alignment. Second, we develop an adversarial perturbation elimination (APE) model to neutralize adversarial nodes in vulnerable space to adversarial-free nodes in safe area, by integrating Dirac delta approximation (DDA) techniques and the LSTM models. Our proposed APE method is able to provide proactive protection to existing network alignment algorithms against adversarial attacks. The theoretical analysis demonstrates the existence of an optimal distribution for the APE model to reach a lower bound. Last but not least, extensive evaluation on real datasets presents that RNA is able to offer the preemptive protection to trained network alignment methods against three popular adversarial attack models.
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